Non-stationary data segmentation with hidden evidential semi-Markov chains

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Abstract

Hidden Markov chains (HMCs) are widely used in unsupervised Bayesian hidden discrete data restoration. They are very robust and, in spite of their simplicity, they are sufficiently efficient in many cases. However, in complex situations, extensions of HMCs models are of interest. In particular, when sojourn time in hidden states is not geometrical, hidden semi-Markov chains (HSMCs) may work better. Besides, hidden evidential Markov chains (HEMCs) showed its interest in non-stationary situations. In this paper, we propose a new model simultaneously extending HSMCs and HEMCs. Based on triplet Markov chains (TMCs), it is used in an unsupervised framework, parameters being estimated with the Expectation-Maximization (EM) algorithm. We validate its interest through some experiments on hand-drawn images noised with artificial noises.

Original languageEnglish
Article number109025
JournalInternational Journal of Approximate Reasoning
Volume162
DOIs
Publication statusPublished - 1 Nov 2023

Keywords

  • Hidden Markov chains
  • Hidden semi-Markov chains
  • Non-stationary data
  • Theory of evidence
  • Triplet Markov chains
  • Unsupervised Bayesian segmentation

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